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首页> 外文期刊>Evolutionary anthropology: issues, news, and reviews >Finding Fossils in New Ways: An Artificial Neural Network Approach to Predicting the Location of Productive Fossil Localities
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Finding Fossils in New Ways: An Artificial Neural Network Approach to Predicting the Location of Productive Fossil Localities

机译:以新的方式找到化石:一种人工神经网络方法来预测生产性化石的位置

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摘要

Chance and serendipity have long played a role in the location of productive fossil localities by vertebrate paleontologists and paleoanthropologists. We offer an alternative approach, informed by methods borrowed from the geographic information sciences and using recent advances in computer science, to more efficiently predict where fossil localities might be found. Our model uses an artificial neural network (ANN) that is trained to recognize the spectral characteristics of known productive localities and other land cover classes, such as forest, wetlands, and scrubland, within a study area based on the analysis of remotely sensed (RS) imagery. Using these spectral signatures, the model then classifies other pixels throughout the study area. The results of the neural network classification can be examined and further manipulated within a geographic information systems (GIS) software package. While we have developed and tested this model on fossil mammal localities in deposits of Paleocene and Eocene age in the Great Divide Basin of southwestern Wyoming, a similar analytical approach can be easily applied to fossil-bearing sedimentary deposits of any age in any part of the world. We suggest that new analytical tools and methods of the geographic sciences, including remote sensing and geographic information systems, are poised to greatly enrich paleoanthropological investigations, and that these new methods should be embraced by field workers in the search for, and geospatial analysis of, fossil primates and hominins.
机译:长期以来,偶然性和偶然性在脊椎动物古生物学家和古人类学家在生产化石的地点中起着重要作用。我们提供了一种替代方法,该方法可以借鉴地理信息科学的方法,并利用计算机科学的最新进展来更有效地预测可能在何处发现化石。我们的模型使用经过人工训练的人工神经网络(ANN),可以根据遥感(RS)的分析来识别研究区域内已知生产地区和其他土地覆盖类型(例如森林,湿地和灌丛)的光谱特征)图像。然后使用这些光谱特征,模型对整个研究区域中的其他像素进行分类。神经网络分类的结果可以在地理信息系统(GIS)软件包中进行检查和进一步处理。虽然我们已经在怀俄明州西南部大分水岭盆地的古新世和始新世时代的化石哺乳动物位置开发并测试了该模型,但类似的分析方法可以轻松地应用于怀俄明州任何地区任何年龄的含化石的沉积物。世界。我们建议,包括遥感和地理信息系统在内的地理科学新分析工具和方法已准备就绪,可以极大地丰富古人类学研究,并且在寻找和进行地理空间分析时,野外工作人员应采用这些新方法。化石灵长类动物和人类。

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